Pitch assessment method based on deep convolutional neural network dcnn and ctc algorithm

A neural network and deep convolution technology, applied in the field of pitch evaluation, can solve problems such as errors, achieve good robustness, fast calculation speed, and good use effect.

Active Publication Date: 2022-01-28
XIAN CONSERVATORY OF MUSIC +1
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Problems solved by technology

Then, when the melody is matched, the forward algorithm of HMM is used to calculate the matching similarity as the matching probability. The limitation of this method is that it will cause errors when the query melody length is greater than the longest path in HMM.

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  • Pitch assessment method based on deep convolutional neural network dcnn and ctc algorithm
  • Pitch assessment method based on deep convolutional neural network dcnn and ctc algorithm
  • Pitch assessment method based on deep convolutional neural network dcnn and ctc algorithm

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Embodiment Construction

[0052] Such as figure 1 with figure 2 Shown, the pitch evaluation method based on deep convolutional neural network DCNN and CTC algorithm of the present invention comprises the following steps: 1. The pitch evaluation method based on deep convolutional neural network DCNN and CTC algorithm is characterized in that, the method comprises the following step:

[0053] Step 1. Train the deep learning network model. The process is as follows:

[0054] Step 101, using audio recording equipment to collect multiple sets of vocal audio data of professional singers within a specified time, and transmitting and storing them to a computer, naming each set of vocal audio data in the computer according to the name of the person and the number of the music segment, and A MIDI file is provided for each group of human voice audio data, and multiple groups of human voice audio data constitute a standard audio data set;

[0055]Step 102, the computer performs feature extraction on each group...

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Abstract

The invention discloses an intonation evaluation method based on a deep convolutional neural network DCNN and a CTC algorithm, comprising the steps of: 1. training a deep learning network model; 2. testing the recognition of musical notes in audio data; 3. testing the pitch in audio data 4. Test the recognition of rhythm in the audio data. The present invention uses a deep learning method to identify and segment the notes in the test melody, and then extracts the characteristic information of pitch and duration for each segmented note, and compares and analyzes it with the standard audio to give the evaluation result. In order to achieve the purpose of music teaching, at the same time, it gives a visual visual mark, so as to provide a more reliable and comprehensive intonation evaluation solution for the effective development of music basic teaching, and evaluate the audio quality.

Description

technical field [0001] The invention belongs to the technical field of pitch evaluation, and in particular relates to a pitch evaluation method in music teaching based on a deep convolutional neural network (DCNN) and a CTC algorithm. Background technique [0002] Pitch, intensity, duration, and timbre are the four properties of sound. Among them, the pitch and length are decisive for the quality of intonation. In the field of music education, solfeggio and ear training is the most important music basic course. Through solfeggio and listening, this course cultivates learners' correct intonation, rhythm and score-sight-singing ability, so that learners have professional music skills. literacy, and promote the improvement of their musical aesthetic ability. However, the current solfeggio teaching is generally based on the "factory model" of the 19th century. All students learn at the same time and place at the same speed and in the same way, using the "assembly line" model t...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G10L25/60G10L25/30G10L25/03G10L25/24G06N3/04G06N3/08
CPCG10L25/60G10L25/30G10L25/03G10L25/24G06N3/08G06N3/045
Inventor 冯勇王薇许鹏飞康金龙
Owner XIAN CONSERVATORY OF MUSIC
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